A modified version of runc adding a custom pre-start hook to all containers.
If environment variable NVIDIA_VISIBLE_DEVICES
is set in the OCI spec, the hook will configure GPU access for the container by leveraging nvidia-container-cli
from project libnvidia-container.
# Setup a rootfs based on Ubuntu 16.04
cd $(mktemp -d) && mkdir rootfs
curl -sS http://cdimage.ubuntu.com/ubuntu-base/releases/16.04/release/ubuntu-base-16.04-core-amd64.tar.gz | tar --exclude 'dev/*' -C rootfs -xz
# Create an OCI runtime spec
nvidia-container-runtime spec
sed -i 's;"sh";"nvidia-smi";' config.json
sed -i 's;\("TERM=xterm"\);\1, "NVIDIA_VISIBLE_DEVICES=0";' config.json
# Run the container
sudo nvidia-container-runtime run nvidia_smi
- Install the repository for your distribution by following the instructions here.
- Install the
nvidia-container-runtime
package:
sudo apt-get install nvidia-container-runtime
- Install the repository for your distribution by following the instructions here.
- Install the
nvidia-container-runtime
package:
sudo yum install nvidia-container-runtime
Do not follow this section if you installed the nvidia-docker2
package, it already registers the runtime.
To register the nvidia
runtime, use the method below that is best suited to your environment.
You might need to merge the new argument with your existing configuration.
sudo mkdir -p /etc/systemd/system/docker.service.d
sudo tee /etc/systemd/system/docker.service.d/override.conf <<EOF
[Service]
ExecStart=
ExecStart=/usr/bin/dockerd --host=fd:// --add-runtime=nvidia=/usr/bin/nvidia-container-runtime
EOF
sudo systemctl daemon-reload
sudo systemctl restart docker
sudo tee /etc/docker/daemon.json <<EOF
{
"runtimes": {
"nvidia": {
"path": "/usr/bin/nvidia-container-runtime",
"runtimeArgs": []
}
}
}
EOF
sudo pkill -SIGHUP dockerd
You can optionally reconfigure the default runtime by adding the following to /etc/docker/daemon.json
:
"default-runtime": "nvidia"
sudo dockerd --add-runtime=nvidia=/usr/bin/nvidia-container-runtime [...]
Each environment variable maps to an command-line argument for nvidia-container-cli
from libnvidia-container.
These variables are already set in our official CUDA images.
This variable controls which GPUs will be made accessible inside the container.
0,1,2
,GPU-fef8089b
…: a comma-separated list of GPU UUID(s) or index(es).all
: all GPUs will be accessible, this is the default value in our container images.none
: no GPU will be accessible, but driver capabilities will be enabled.void
or empty or unset:nvidia-container-runtime
will have the same behavior asrunc
.
Note: When running on a MIG capable device, the following values will also be available:
0:0,0:1,1:0
,MIG-GPU-fef8089b/0/1
…: a comma-separated list of MIG Device UUID(s) or index(es).
Where the MIG device indices have the form <GPU Device Index>:<MIG Device Index>
as seen in the example output:
$ nvidia-smi -L
GPU 0: Graphics Device (UUID: GPU-b8ea3855-276c-c9cb-b366-c6fa655957c5)
MIG Device 0: (UUID: MIG-GPU-b8ea3855-276c-c9cb-b366-c6fa655957c5/1/0)
MIG Device 1: (UUID: MIG-GPU-b8ea3855-276c-c9cb-b366-c6fa655957c5/1/1)
MIG Device 2: (UUID: MIG-GPU-b8ea3855-276c-c9cb-b366-c6fa655957c5/11/0)
This variable controls which of the visible GPUs can have their MIG configuration managed from within the container. This includes enabling and disabling MIG mode, creating and destroying GPU Instances and Compute Instances, etc.
all
: Allow all MIG-capable GPUs in the visible device list to have their MIG configurations managed.
Note:
- This feature is only available on MIG capable devices (e.g. the A100).
- To use this feature, the container must be started with
CAP_SYS_ADMIN
privileges. - When not running as
root
, the container user must have read access to the/proc/driver/nvidia/capabilities/mig/config
file on the host.
This variable controls which of the visible GPUs can have aggregate information about all of their MIG devices monitored from within the container. This includes inspecting the aggregate memory usage, listing the aggregate running processes, etc.
all
: Allow all MIG-capable GPUs in the visible device list to have their MIG devices monitored.
Note:
- This feature is only available on MIG capable devices (e.g. the A100).
- To use this feature, the container must be started with
CAP_SYS_ADMIN
privileges. - When not running as
root
, the container user must have read access to the/proc/driver/nvidia/capabilities/mig/monitor
file on the host.
This option controls which driver libraries/binaries will be mounted inside the container.
compute,video
,graphics,utility
…: a comma-separated list of driver features the container needs.all
: enable all available driver capabilities.- empty or unset: use default driver capability:
utility,compute
.
compute
: required for CUDA and OpenCL applications.compat32
: required for running 32-bit applications.graphics
: required for running OpenGL and Vulkan applications.utility
: required for usingnvidia-smi
and NVML.video
: required for using the Video Codec SDK.display
: required for leveraging X11 display.
A logical expression to define constraints on the configurations supported by the container.
cuda
: constraint on the CUDA driver version.driver
: constraint on the driver version.arch
: constraint on the compute architectures of the selected GPUs.brand
: constraint on the brand of the selected GPUs (e.g. GeForce, Tesla, GRID).
Multiple constraints can be expressed in a single environment variable: space-separated constraints are ORed, comma-separated constraints are ANDed.
Multiple environment variables of the form NVIDIA_REQUIRE_*
are ANDed together.
Single switch to disable all the constraints of the form NVIDIA_REQUIRE_*
.
The version of the CUDA toolkit used by the container. It is an instance of the generic NVIDIA_REQUIRE_*
case and it is set by official CUDA images.
If the version of the NVIDIA driver is insufficient to run this version of CUDA, the container will not be started.
cuda>=7.5
,cuda>=8.0
,cuda>=9.0
…: any valid CUDA version in the formmajor.minor
.
Similar to NVIDIA_REQUIRE_CUDA
, for legacy CUDA images.
In addition, if NVIDIA_REQUIRE_CUDA
is not set, NVIDIA_VISIBLE_DEVICES
and NVIDIA_DRIVER_CAPABILITIES
will default to all
.
Checkout the Contributing document!
- Please let us know by filing a new issue
- You can contribute by opening a pull request